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A Novel end-to-end Digital Health System Using Deep Learning-based ECG Analysis

arXiv:2603.16891h-index: 22
AI Analysis

This addresses the need for scalable AI integration into routine ECG services for clinicians, though it appears incremental as it builds on existing deep learning methods for ECG analysis.

The study tackled the problem of managing and analyzing long-duration ambulatory ECG recordings by developing AI-HEART, a cloud-based system that uses deep learning for arrhythmia classification and other tasks, achieving high specificity and clinically useful performance across rhythms.

This study presents AI-HEART, a cloud-based information system for managing and analysing long-duration ambulatory electrocardiogram (ECG) recordings and supporting clinician decision-making. The platform operationalises an end-to-end pipeline that ingests multi-day three-lead ECGs, normalises inputs, performs signal preprocessing, and applies dedicated deep neural networks for wave delineation, noise/quality detection, and beat- and rhythm-level multi-class arrhythmia classification. To address class imbalance and real-world signal variability, model development combines large clinically annotated datasets with expert-in-the-loop curation and generative augmentation for under-represented rhythms. Empirical evaluation on three-lead ambulatory ECG data shows that delineation accuracy is sufficient for automated interval measurement, noise detection reliably flags poor-quality segments, and arrhythmia classification achieves high specificity with clinically useful macro-averaged performance across common and rarer rhythms. Beyond predictive accuracy, AI-HEART provides a scalable deployment approach for integrating AI into routine ECG services, enabling traceable outputs, audit-friendly storage of recordings and derived annotations, and clinician review/editing that captures feedback for controlled model improvement. The findings demonstrate the technical feasibility and operational value of a noise-aware AI-ECG platform as a digital health information system.

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